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Machine Learning for Predicting Development of Asthma in Children

机译:用于预测儿童哮喘发育的机器学习

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Asthma in children needs to be identified as early as possible to provide children with medical intervention. Creating a model that accurately predicts asthma in children has proven difficult. In the current state, research has provided models for asthma prediction that have low accuracy and use a small, specific sample size. There are limited research that analyzes a large population of children, using specific factors, to develop a model that can be used in a clinical setting. In this paper, we developed predictive models to analyze a child asthma health dataset. Machine learning classifiers are used to develop these predictive models; including Linear Regression, Decision Tree, Random Forest, KNN, and Naive Bayes technique. Of all the classifiers implemented, random forest classifier resulted in highest prediction accuracy (90.9%). Following are the variables: Sex, Difficulty Breathing, Allergies, and Medication have the highest correlation with asthma. The review of current research and the results of model that are presented in this paper can be used in a clinical setting by medical professionals to make predictions of asthma development in children and implement early intervention for the treatment of asthma development.
机译:儿童哮喘需要尽早识别,以提供医疗干预的儿童。创建一个准确预测儿童哮喘的模型已经证明困难。在当前状态下,研究为哮喘预测提供了具有低精度和使用小的特定样本大小的哮喘预测的模型。有限的研究有限,分析了使用特定因素的大量儿童,开发可用于临床环境的模型。在本文中,我们开发了分析儿童哮喘健康数据集的预测模型。机器学习分类器用于开发这些预测模型;包括线性回归,决策树,随机森林,knn和幼稚贝叶斯技术。在实现所有分类器中,随机林分类器导致最高预测精度(90.9%)。以下是变量:性别,呼吸困难,过敏和药物的相关性与哮喘有最高的相关性。本文提出的目前研究和模型结果的审查可用于医疗专业人员的临床环境中,以便在儿童中进行哮喘发育,并实施早期干预治疗哮喘发育。

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